Data Architect

Stackstudio Digital.
London
1 day ago
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Job Details
Role / Job Title:Data Architect
Work Location:London
Role Type (Permanent / Fixed Term / Contracting):Contracting
If Hybrid, how many days are required in office-2 3 days mandatory in office
The Role
Lloyds Banking Group (LBG) is one of the largest and most established financial institutions in the UK, operating across retail, commercial, and investment banking. As part of their long-term transformation strategy, the Group is heavily investing in modernising its data landscape to become a fully data-driven organisation. This includes migrating away from traditional legacy systems and adopting scalable, cloud-native data platforms.
Within this context, the Risk Foundations Platform plays a critical role. The platform's vision is to design, build, and deliver enterprise-grade data products that enhance risk modelling, reporting, and regulatory compliance. A key strategic priority for the team is the decommissioning of legacy data stores and replacing them with modern, cloud-based capabilities that are fully owned and managed within the platform.
Programme Focus
The programme focuses on:
  • Establishing a robust, secure, and scalable data architecture on Google Cloud Platform (GCP)
  • Creating in-house capabilities for data ingestion, transformation, storage, and consumption
    ...

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